Melo Tânia, Carneiro Ângela, Campilho Aurélio, Mendonça Ana Maria
University of Porto, Electrical and Computer Engineering Department, Faculty of Engineering, Porto, Portugal.
Institute for Systems and Computer Engineering, Technology and Science, Porto, Portugal.
J Med Imaging (Bellingham). 2023 Jan;10(1):014006. doi: 10.1117/1.JMI.10.1.014006. Epub 2023 Feb 21.
The development of accurate methods for retinal layer and fluid segmentation in optical coherence tomography images can help the ophthalmologists in the diagnosis and follow-up of retinal diseases. Recent works based on joint segmentation presented good results for the segmentation of most retinal layers, but the fluid segmentation results are still not satisfactory. We report a hierarchical framework that starts by distinguishing the retinal zone from the background, then separates the fluid-filled regions from the rest, and finally, discriminates the several retinal layers.
Three fully convolutional networks were trained sequentially. The weighting scheme used for computing the loss function during training is derived from the outputs of the networks trained previously. To reinforce the relative position between retinal layers, the mutex Dice loss (included for optimizing the last network) was further modified so that errors between more "distant" layers are more penalized. The method's performance was evaluated using a public dataset.
The proposed hierarchical approach outperforms previous works in the segmentation of the inner segment ellipsoid layer and fluid (Dice coefficient = 0.95 and 0.82, respectively). The results achieved for the remaining layers are at a state-of-the-art level.
The proposed framework led to significant improvements in fluid segmentation, without compromising the results in the retinal layers. Thus, its output can be used by ophthalmologists as a second opinion or as input for automatic extraction of relevant quantitative biomarkers.
开发用于光学相干断层扫描图像中视网膜层和液体分割的精确方法,有助于眼科医生对视网膜疾病进行诊断和随访。最近基于联合分割的工作在大多数视网膜层的分割方面取得了良好结果,但液体分割结果仍不尽人意。我们报告了一个分层框架,该框架首先将视网膜区域与背景区分开,然后将充满液体的区域与其余部分分开,最后区分几个视网膜层。
依次训练三个全卷积网络。训练期间用于计算损失函数的加权方案源自先前训练的网络的输出。为了加强视网膜层之间的相对位置,互斥骰子损失(用于优化最后一个网络)被进一步修改,以便对更“远”层之间的误差进行更严厉的惩罚。使用公共数据集评估该方法的性能。
所提出的分层方法在内段椭圆体层和液体的分割方面优于先前的工作(骰子系数分别为0.95和0.82)。其余层的分割结果达到了当前的先进水平。
所提出的框架在不影响视网膜层分割结果的情况下,显著改善了液体分割。因此,其输出可被眼科医生用作第二种意见或作为自动提取相关定量生物标志物的输入。